Recent advances in deep learning have enhanced medical imaging research. Breast cancer is the most prevalent cancer among women, and many applications have been developed to improve its early detection. The purpose of this review is to examine how various deep learning methods can be applied to breast cancer screening workflows. We summarize deep learning methods, data availability and different screening methods for breast cancer including mammography, thermography, ultrasound and magnetic resonance imaging. In this review, we will explore deep learning in diagnostic breast imaging and describe the literature review. As a conclusion, we discuss some of the limitations and opportunities of integrating artificial intelligence into breast cancer clinical practice.
In order to maintain a healthy ecosystem and fish stocks, it is necessary to monitor the abundance and frequency of fish species. In this article, we propose a fish detection and classification system. In the first step, the images were extracted from a public Ocqueoc River DIDSON high-resolution imaging sonar dataset and annotated. End-to-end object detection models, Detection Transformer with a ResNet-50 backbone (DETR-ResNet-50) and YOLOv7 were used to detect and classify fish species. With a mean average precision of 0.79, YOLOv7 outperformed DETR-ResNet-50. The results demonstrated that the proposed system can in fact be used to detect and classify fish species using high-resolution imaging sonar data.
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